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Titel:

Assessing the Performance of Machine Learning Methods Trained on Public Health Observational Data: A Case Study From COVID-19.

Dokumenttyp:
Journal Article
Autor(en):
Pigoli, Davide; Baker, Kieran; Budd, Jobie; Butler, Lorraine; Coppock, Harry; Egglestone, Sabrina; Gilmour, Steven G; Holmes, Chris; Hurley, David; Jersakova, Radka; Kiskin, Ivan; Koutra, Vasiliki; Mellor, Jonathon; Nicholson, George; Packham, Joe; Patel, Selina; Payne, Richard; Roberts, Stephen J; Schuller, Björn W; Tendero-Cañadas, Ana; Thornley, Tracey; Titcomb, Alexander
Abstract:
From early in the coronavirus disease 2019 (COVID-19) pandemic, there was interest in using machine learning methods to predict COVID-19 infection status based on vocal audio signals, for example, cough recordings. However, early studies had limitations in terms of data collection and of how the performances of the proposed predictive models were assessed. This article describes how these limitations have been overcome in a study carried out by the Turing-RSS Health Data Laboratory and the UK He...     »
Zeitschriftentitel:
Stat Med
Jahr:
2024
Band / Volume:
43
Heft / Issue:
25
Seitenangaben Beitrag:
4861-4871
Volltext / DOI:
doi:10.1002/sim.10211
PubMed:
http://view.ncbi.nlm.nih.gov/pubmed/39237100
Print-ISSN:
0277-6715
TUM Einrichtung:
Lehrstuhl für Health Informatics (Prof. Schuller)
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